Publication | Closed Access
Multi-Modal Sarcasm Detection with Interactive In-Modal and Cross-Modal Graphs
102
Citations
39
References
2021
Year
Unknown Venue
EngineeringCommunicationMultimodal Sentiment AnalysisCorpus LinguisticsImplied Sentiment ExpressionText MiningNatural Language ProcessingSocial MediaData ScienceComputational LinguisticsAffective ComputingContent AnalysisSocial Medium MiningMultimodal Signal ProcessingSocial Media PlatformsSarcasm DetectionMulti-modal Sarcasm DetectionSocial Medium DataArtsHumor Detection
Sarcasm is a peculiar form and sophisticated linguistic act to express the incongruity of someone's implied sentiment expression, which is a pervasive phenomenon in social media platforms. Compared with sarcasm detection purely on texts, multi-modal sarcasm detection is more adapted to the rapidly growing social media platforms, where people are interested in creating multi-modal messages. When focusing on the multi-modal sarcasm detection for tweets consisting of texts and images on Twitter, the significant clue of improving the performance of multi-modal sarcasm detection evolves into how to determine the incongruity relations between texts and images. In this paper, we investigate multi-modal sarcasm detection from a novel perspective, so as to determine the sentiment inconsistencies within a certain modality and across different modalities by constructing heterogeneous in-modal and cross-modal graphs (InCrossMGs) for each multi-modal example. Based on it, we explore an interactive graph convolution network (GCN) structure to jointly and interactively learn the incongruity relations of in-modal and cross-modal graphs for determining the significant clues in sarcasm detection. Experimental results demonstrate that our proposed model achieves state-of-the-art performance in multi-modal sarcasm detection.
| Year | Citations | |
|---|---|---|
Page 1
Page 1